CVJun 29, 2019

Evaluating Local Geometric Feature Representations for 3D Rigid Data Matching

arXiv:1907.00233v137 citations
Originality Synthesis-oriented
AI Analysis

It addresses the problem of quantitatively comparing feature representations for researchers in 3D computer vision, though it is incremental as it fills a gap in evaluation rather than introducing new methods.

This paper comprehensively evaluated nine state-of-the-art local geometric feature representations for 3D rigid data matching, using ground-truth local reference frames on six datasets with various scenarios and perturbations, revealing findings that provide complementary perspectives to existing evaluations.

Local geometric descriptors remain an essential component for 3D rigid data matching and fusion. The devise of a rotational invariant local geometric descriptor usually consists of two steps: local reference frame (LRF) construction and feature representation. Existing evaluation efforts have mainly been paid on the LRF or the overall descriptor, yet the quantitative comparison of feature representations remains unexplored. This paper fills this gap by comprehensively evaluating nine state-of-the-art local geometric feature representations. Our evaluation is on the ground that ground-truth LRFs are leveraged such that the ranking of tested feature representations are more convincing as opposed to existing studies. The experiments are deployed on six standard datasets with various application scenarios (shape retrieval, point cloud registration, and object recognition) and data modalities (LiDAR, Kinect, and Space Time) as well as perturbations including Gaussian noise, shot noise, data decimation, clutter, occlusion, and limited overlap. The evaluated terms cover the major concerns for a feature representation, e.g., distinctiveness, robustness, compactness, and efficiency. The outcomes present interesting findings that may shed new light on this community and provide complementary perspectives to existing evaluations on the topic of local geometric feature description. A summary of evaluated methods regarding their peculiarities is also presented to guide real-world applications and new descriptor crafting.

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